Bernstein Center Freiburg, University of Freiburg, Freiburg, Germany.
PLoS One. 2013;8(2):e55235. doi: 10.1371/journal.pone.0055235. Epub 2013 Feb 1.
Brain-machine interfaces (BMIs) can translate the neuronal activity underlying a user's movement intention into movements of an artificial effector. In spite of continuous improvements, errors in movement decoding are still a major problem of current BMI systems. If the difference between the decoded and intended movements becomes noticeable, it may lead to an execution error. Outcome errors, where subjects fail to reach a certain movement goal, are also present during online BMI operation. Detecting such errors can be beneficial for BMI operation: (i) errors can be corrected online after being detected and (ii) adaptive BMI decoding algorithm can be updated to make fewer errors in the future.
METHODOLOGY/PRINCIPAL FINDINGS: Here, we show that error events can be detected from human electrocorticography (ECoG) during a continuous task with high precision, given a temporal tolerance of 300-400 milliseconds. We quantified the error detection accuracy and showed that, using only a small subset of 2×2 ECoG electrodes, 82% of detection information for outcome error and 74% of detection information for execution error available from all ECoG electrodes could be retained.
CONCLUSIONS/SIGNIFICANCE: The error detection method presented here could be used to correct errors made during BMI operation or to adapt a BMI algorithm to make fewer errors in the future. Furthermore, our results indicate that smaller ECoG implant could be used for error detection. Reducing the size of an ECoG electrode implant used for BMI decoding and error detection could significantly reduce the medical risk of implantation.
脑机接口 (BMI) 可以将用户运动意图所对应的神经元活动转化为人工效应器的运动。尽管不断改进,运动解码错误仍然是当前 BMI 系统的主要问题。如果解码运动和预期运动之间的差异变得明显,可能会导致执行错误。在在线 BMI 操作过程中,也会出现目标运动无法达到的输出错误。检测此类错误对于 BMI 操作是有益的:(i)可以在检测到错误后在线进行纠正,(ii)可以更新自适应 BMI 解码算法,以减少未来的错误。
方法/主要发现:在此,我们表明,在连续任务中,给定 300-400 毫秒的时间容限,可以高精度地从人类脑电 (ECoG) 中检测到错误事件。我们量化了错误检测的准确性,并表明仅使用 2×2 ECoG 电极的一小部分,就可以保留来自所有 ECoG 电极的 82%的输出错误检测信息和 74%的执行错误检测信息。
结论/意义:这里提出的错误检测方法可用于纠正 BMI 操作过程中的错误,或用于调整 BMI 算法以减少未来的错误。此外,我们的结果表明,可以使用更小的 ECoG 植入体进行错误检测。减少用于 BMI 解码和错误检测的 ECoG 电极植入体的大小,可以显著降低植入的医疗风险。